/*
 * Copyright (c) 1993-2022, NVIDIA CORPORATION. All rights reserved.
 *
 * Licensed under the Apache License, Version 2.0 (the "License");
 * you may not use this file except in compliance with the License.
 * You may obtain a copy of the License at
 *
 *     http://www.apache.org/licenses/LICENSE-2.0
 *
 * Unless required by applicable law or agreed to in writing, software
 * distributed under the License is distributed on an "AS IS" BASIS,
 * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
 * See the License for the specific language governing permissions and
 * limitations under the License.
 */

#include <algorithm>
#include <cctype>
#include <cstring>
#include <functional>
#include <iostream>
#include <stdexcept>
#include <string>
#include <vector>

#include "NvInfer.h"

#include "logger.h"
#include "sampleOptions.h"

namespace sample {

namespace {

std::vector<std::string> splitToStringVec(const std::string& option,
                                          char separator) {
  std::vector<std::string> options;

  for (size_t start = 0; start < option.length();) {
    size_t separatorIndex = option.find(separator, start);
    if (separatorIndex == std::string::npos) {
      separatorIndex = option.length();
    }
    options.emplace_back(option.substr(start, separatorIndex - start));
    start = separatorIndex + 1;
  }

  return options;
}

template <typename T>
T stringToValue(const std::string& option) {
  return T{option};
}

template <>
int32_t stringToValue<int32_t>(const std::string& option) {
  return std::stoi(option);
}

template <>
float stringToValue<float>(const std::string& option) {
  return std::stof(option);
}

template <>
double stringToValue<double>(const std::string& option) {
  return std::stod(option);
}

template <>
bool stringToValue<bool>(const std::string& option) {
  return true;
}

template <>
std::vector<int32_t> stringToValue<std::vector<int32_t>>(
    const std::string& option) {
  std::vector<int32_t> shape;
  std::vector<std::string> dimsStrings = splitToStringVec(option, 'x');
  for (const auto& d : dimsStrings) {
    shape.push_back(stringToValue<int32_t>(d));
  }
  return shape;
}

template <>
nvinfer1::DataType stringToValue<nvinfer1::DataType>(
    const std::string& option) {
  const std::unordered_map<std::string, nvinfer1::DataType> strToDT{
      {"fp32", nvinfer1::DataType::kFLOAT},
      {"fp16", nvinfer1::DataType::kHALF},
      {"int8", nvinfer1::DataType::kINT8},
      {"int32", nvinfer1::DataType::kINT32}};
  const auto& dt = strToDT.find(option);
  if (dt == strToDT.end()) {
    throw std::invalid_argument("Invalid DataType " + option);
  }
  return dt->second;
}

template <>
nvinfer1::TensorFormats stringToValue<nvinfer1::TensorFormats>(
    const std::string& option) {
  std::vector<std::string> optionStrings = splitToStringVec(option, '+');
  const std::unordered_map<std::string, nvinfer1::TensorFormat> strToFmt{
      {"chw", nvinfer1::TensorFormat::kLINEAR},
      {"chw2", nvinfer1::TensorFormat::kCHW2},
      {"chw4", nvinfer1::TensorFormat::kCHW4},
      {"hwc8", nvinfer1::TensorFormat::kHWC8},
      {"chw16", nvinfer1::TensorFormat::kCHW16},
      {"chw32", nvinfer1::TensorFormat::kCHW32},
      {"dhwc8", nvinfer1::TensorFormat::kDHWC8},
      {"hwc", nvinfer1::TensorFormat::kHWC},
      {"dla_linear", nvinfer1::TensorFormat::kDLA_LINEAR},
      {"dla_hwc4", nvinfer1::TensorFormat::kDLA_HWC4}};
  nvinfer1::TensorFormats formats{};
  for (auto f : optionStrings) {
    const auto& tf = strToFmt.find(f);
    if (tf == strToFmt.end()) {
      throw std::invalid_argument(std::string("Invalid TensorFormat ") + f);
    }
    formats |= 1U << static_cast<int32_t>(tf->second);
  }

  return formats;
}

template <>
IOFormat stringToValue<IOFormat>(const std::string& option) {
  IOFormat ioFormat{};
  const size_t colon = option.find(':');

  if (colon == std::string::npos) {
    throw std::invalid_argument(std::string("Invalid IOFormat ") + option);
  }

  ioFormat.first = stringToValue<nvinfer1::DataType>(option.substr(0, colon));
  ioFormat.second =
      stringToValue<nvinfer1::TensorFormats>(option.substr(colon + 1));

  return ioFormat;
}

template <typename T>
std::pair<std::string, T> splitNameAndValue(const std::string& s) {
  std::string tensorName;
  std::string valueString;
  // Split on the last :
  std::vector<std::string> nameRange{splitToStringVec(s, ':')};
  // Everything before the last : is the name
  tensorName = nameRange[0];
  for (size_t i = 1; i < nameRange.size() - 1; i++) {
    tensorName += ":" + nameRange[i];
  }
  // Value is the string element after the last :
  valueString = nameRange[nameRange.size() - 1];
  return std::pair<std::string, T>(tensorName, stringToValue<T>(valueString));
}

template <typename T>
void splitInsertKeyValue(const std::vector<std::string>& kvList, T& map) {
  for (const auto& kv : kvList) {
    map.insert(splitNameAndValue<typename T::mapped_type>(kv));
  }
}

const char* boolToEnabled(bool enable) {
  return enable ? "Enabled" : "Disabled";
}

//! Check if input option exists in input arguments.
//! If it does: return its value, erase the argument and return true.
//! If it does not: return false.
template <typename T>
bool getAndDelOption(Arguments& arguments, const std::string& option,
                     T& value) {
  const auto match = arguments.find(option);
  if (match != arguments.end()) {
    value = stringToValue<T>(match->second);
    arguments.erase(match);
    return true;
  }

  return false;
}

//! Check if input option exists in input arguments.
//! If it does: return false in value, erase the argument and return true.
//! If it does not: return false.
bool getAndDelNegOption(Arguments& arguments, const std::string& option,
                        bool& value) {
  bool dummy;
  if (getAndDelOption(arguments, option, dummy)) {
    value = false;
    return true;
  }
  return false;
}

//! Check if input option exists in input arguments.
//! If it does: add all the matched arg values to values vector, erase the
//! argument and return true.
//! If it does not: return false.
template <typename T>
bool getAndDelRepeatedOption(Arguments& arguments, const std::string& option,
                             std::vector<T>& values) {
  const auto match = arguments.equal_range(option);
  if (match.first == match.second) {
    return false;
  }

  auto addToValues = [&values](Arguments::value_type& argValue) {
    values.emplace_back(stringToValue<T>(argValue.second));
  };
  std::for_each(match.first, match.second, addToValues);
  arguments.erase(match.first, match.second);

  return true;
}

void insertShapesBuild(std::unordered_map<std::string, ShapeRange>& shapes,
                       nvinfer1::OptProfileSelector selector,
                       const std::string& name,
                       const std::vector<int32_t>& dims) {
  shapes[name][static_cast<size_t>(selector)] = dims;
}

void insertShapesInference(
    std::unordered_map<std::string, std::vector<int32_t>>& shapes,
    const std::string& name, const std::vector<int32_t>& dims) {
  shapes[name] = dims;
}

std::string removeSingleQuotationMarks(std::string& str) {
  std::vector<std::string> strList{splitToStringVec(str, '\'')};
  // Remove all the escaped single quotation marks
  std::string retVal = "";
  // Do not really care about unterminated sequences
  for (size_t i = 0; i < strList.size(); i++) {
    retVal += strList[i];
  }
  return retVal;
}

void getLayerPrecisions(Arguments& arguments, char const* argument,
                        LayerPrecisions& layerPrecisions) {
  std::string list;
  if (!getAndDelOption(arguments, argument, list)) {
    return;
  }

  // The layerPrecisions flag contains comma-separated layerName:precision
  // pairs.
  std::vector<std::string> precisionList{splitToStringVec(list, ',')};
  for (auto const& s : precisionList) {
    auto namePrecisionPair = splitNameAndValue<nvinfer1::DataType>(s);
    auto const layerName = removeSingleQuotationMarks(namePrecisionPair.first);
    layerPrecisions[layerName] = namePrecisionPair.second;
  }
}

void getLayerOutputTypes(Arguments& arguments, char const* argument,
                         LayerOutputTypes& layerOutputTypes) {
  std::string list;
  if (!getAndDelOption(arguments, argument, list)) {
    return;
  }

  // The layerOutputTypes flag contains comma-separated layerName:types pairs.
  std::vector<std::string> precisionList{splitToStringVec(list, ',')};
  for (auto const& s : precisionList) {
    auto namePrecisionPair = splitNameAndValue<std::string>(s);
    auto const layerName = removeSingleQuotationMarks(namePrecisionPair.first);
    auto const typeStrings = splitToStringVec(namePrecisionPair.second, '+');
    std::vector<nvinfer1::DataType> typeVec(typeStrings.size(),
                                            nvinfer1::DataType::kFLOAT);
    std::transform(typeStrings.begin(), typeStrings.end(), typeVec.begin(),
                   stringToValue<nvinfer1::DataType>);
    layerOutputTypes[layerName] = typeVec;
  }
}

bool getShapesBuild(Arguments& arguments,
                    std::unordered_map<std::string, ShapeRange>& shapes,
                    char const* argument,
                    nvinfer1::OptProfileSelector selector) {
  std::string list;
  bool retVal = getAndDelOption(arguments, argument, list);
  std::vector<std::string> shapeList{splitToStringVec(list, ',')};
  for (const auto& s : shapeList) {
    auto nameDimsPair = splitNameAndValue<std::vector<int32_t>>(s);
    auto tensorName = removeSingleQuotationMarks(nameDimsPair.first);
    auto dims = nameDimsPair.second;
    insertShapesBuild(shapes, selector, tensorName, dims);
  }
  return retVal;
}

bool getShapesInference(
    Arguments& arguments,
    std::unordered_map<std::string, std::vector<int32_t>>& shapes,
    const char* argument) {
  std::string list;
  bool retVal = getAndDelOption(arguments, argument, list);
  std::vector<std::string> shapeList{splitToStringVec(list, ',')};
  for (const auto& s : shapeList) {
    auto nameDimsPair = splitNameAndValue<std::vector<int32_t>>(s);
    auto tensorName = removeSingleQuotationMarks(nameDimsPair.first);
    auto dims = nameDimsPair.second;
    insertShapesInference(shapes, tensorName, dims);
  }
  return retVal;
}

void processShapes(std::unordered_map<std::string, ShapeRange>& shapes,
                   bool minShapes, bool optShapes, bool maxShapes, bool calib) {
  // Only accept optShapes only or all three of minShapes, optShapes, maxShapes
  if (((minShapes || maxShapes) && !optShapes)   // minShapes only, maxShapes
                                                 // only, both minShapes and
                                                 // maxShapes
      || (minShapes && !maxShapes && optShapes)  // both minShapes and optShapes
      ||
      (!minShapes && maxShapes && optShapes))  // both maxShapes and optShapes
  {
    if (calib) {
      throw std::invalid_argument(
          "Must specify only --optShapesCalib or all of --minShapesCalib, "
          "--optShapesCalib, --maxShapesCalib");
    } else {
      throw std::invalid_argument(
          "Must specify only --optShapes or all of --minShapes, --optShapes, "
          "--maxShapes");
    }
  }

  // If optShapes only, expand optShapes to minShapes and maxShapes
  if (optShapes && !minShapes && !maxShapes) {
    std::unordered_map<std::string, ShapeRange> newShapes;
    for (auto& s : shapes) {
      insertShapesBuild(
          newShapes, nvinfer1::OptProfileSelector::kMIN, s.first,
          s.second[static_cast<size_t>(nvinfer1::OptProfileSelector::kOPT)]);
      insertShapesBuild(
          newShapes, nvinfer1::OptProfileSelector::kOPT, s.first,
          s.second[static_cast<size_t>(nvinfer1::OptProfileSelector::kOPT)]);
      insertShapesBuild(
          newShapes, nvinfer1::OptProfileSelector::kMAX, s.first,
          s.second[static_cast<size_t>(nvinfer1::OptProfileSelector::kOPT)]);
    }
    shapes = newShapes;
  }
}

template <typename T>
void printShapes(std::ostream& os, const char* phase, const T& shapes) {
  if (shapes.empty()) {
    os << "Input " << phase << " shapes: model" << std::endl;
  } else {
    for (const auto& s : shapes) {
      os << "Input " << phase << " shape: " << s.first << "=" << s.second
         << std::endl;
    }
  }
}

std::ostream& printBatch(std::ostream& os, int32_t maxBatch) {
  if (maxBatch != maxBatchNotProvided) {
    os << maxBatch;
  } else {
    os << "explicit batch";
  }
  return os;
}

std::ostream& printTacticSources(std::ostream& os,
                                 nvinfer1::TacticSources enabledSources,
                                 nvinfer1::TacticSources disabledSources) {
  if (!enabledSources && !disabledSources) {
    os << "Using default tactic sources";
  } else {
    auto const addSource = [&](uint32_t source, std::string const& name) {
      if (enabledSources & source) {
        os << name << " [ON], ";
      } else if (disabledSources & source) {
        os << name << " [OFF], ";
      }
    };

    addSource(1U << static_cast<uint32_t>(nvinfer1::TacticSource::kCUBLAS),
              "cublas");
    addSource(1U << static_cast<uint32_t>(nvinfer1::TacticSource::kCUBLAS_LT),
              "cublasLt");
    addSource(1U << static_cast<uint32_t>(nvinfer1::TacticSource::kCUDNN),
              "cudnn");
  }
  return os;
}

std::ostream& printPrecision(std::ostream& os, BuildOptions const& options) {
  os << "FP32";
  if (options.fp16) {
    os << "+FP16";
  }
  if (options.int8) {
    os << "+INT8";
  }
  if (options.precisionConstraints == PrecisionConstraints::kOBEY) {
    os << " (obey precision constraints)";
  }
  if (options.precisionConstraints == PrecisionConstraints::kPREFER) {
    os << " (prefer precision constraints)";
  }
  return os;
}

std::ostream& printTimingCache(std::ostream& os, BuildOptions const& options) {
  switch (options.timingCacheMode) {
    case TimingCacheMode::kGLOBAL:
      os << "global";
      break;
    case TimingCacheMode::kLOCAL:
      os << "local";
      break;
    case TimingCacheMode::kDISABLE:
      os << "disable";
      break;
  }
  return os;
}

std::ostream& printSparsity(std::ostream& os, BuildOptions const& options) {
  switch (options.sparsity) {
    case SparsityFlag::kDISABLE:
      os << "Disabled";
      break;
    case SparsityFlag::kENABLE:
      os << "Enabled";
      break;
    case SparsityFlag::kFORCE:
      os << "Forced";
      break;
  }

  return os;
}

std::ostream& printMemoryPools(std::ostream& os, BuildOptions const& options) {
  auto const printValueOrDefault = [&os](double const val) {
    if (val >= 0) {
      os << val << " MiB";
    } else {
      os << "default";
    }
  };
  os << "workspace: ";
  printValueOrDefault(options.workspace);
  os << ", ";
  os << "dlaSRAM: ";
  printValueOrDefault(options.dlaSRAM);
  os << ", ";
  os << "dlaLocalDRAM: ";
  printValueOrDefault(options.dlaLocalDRAM);
  os << ", ";
  os << "dlaGlobalDRAM: ";
  printValueOrDefault(options.dlaGlobalDRAM);
  return os;
}

}  // namespace

Arguments argsToArgumentsMap(int32_t argc, char* argv[]) {
  Arguments arguments;
  for (int32_t i = 1; i < argc; ++i) {
    auto valuePtr = strchr(argv[i], '=');
    if (valuePtr) {
      std::string value{valuePtr + 1};
      arguments.emplace(std::string(argv[i], valuePtr - argv[i]), value);
    } else {
      arguments.emplace(argv[i], "");
    }
  }
  return arguments;
}

void BaseModelOptions::parse(Arguments& arguments) {
  if (getAndDelOption(arguments, "--onnx", model)) {
    format = ModelFormat::kONNX;
  } else if (getAndDelOption(arguments, "--uff", model)) {
    format = ModelFormat::kUFF;
  } else if (getAndDelOption(arguments, "--model", model)) {
    format = ModelFormat::kCAFFE;
  }
}

void UffInput::parse(Arguments& arguments) {
  getAndDelOption(arguments, "--uffNHWC", NHWC);
  std::vector<std::string> args;
  if (getAndDelRepeatedOption(arguments, "--uffInput", args)) {
    for (const auto& i : args) {
      std::vector<std::string> values{splitToStringVec(i, ',')};
      if (values.size() == 4) {
        nvinfer1::Dims3 dims{std::stoi(values[1]), std::stoi(values[2]),
                             std::stoi(values[3])};
        inputs.emplace_back(values[0], dims);
      } else {
        throw std::invalid_argument(std::string("Invalid uffInput ") + i);
      }
    }
  }
}

void ModelOptions::parse(Arguments& arguments) {
  baseModel.parse(arguments);

  switch (baseModel.format) {
    case ModelFormat::kCAFFE: {
      getAndDelOption(arguments, "--deploy", prototxt);
      break;
    }
    case ModelFormat::kUFF: {
      uffInputs.parse(arguments);
      if (uffInputs.inputs.empty()) {
        throw std::invalid_argument("Uff models require at least one input");
      }
      break;
    }
    case ModelFormat::kONNX:
      break;
    case ModelFormat::kANY: {
      if (getAndDelOption(arguments, "--deploy", prototxt)) {
        baseModel.format = ModelFormat::kCAFFE;
      }
      break;
    }
  }

  // The --output flag should only be used with Caffe and UFF. It has no effect
  // on ONNX.
  std::vector<std::string> outArgs;
  if (getAndDelRepeatedOption(arguments, "--output", outArgs)) {
    for (const auto& o : outArgs) {
      for (auto& v : splitToStringVec(o, ',')) {
        outputs.emplace_back(std::move(v));
      }
    }
  }
  if (baseModel.format == ModelFormat::kCAFFE ||
      baseModel.format == ModelFormat::kUFF) {
    if (outputs.empty()) {
      throw std::invalid_argument(
          "Caffe and Uff models require at least one output");
    }
  } else if (baseModel.format == ModelFormat::kONNX) {
    if (!outputs.empty()) {
      throw std::invalid_argument(
          "The --output flag should not be used with ONNX models.");
    }
  }
}

void BuildOptions::parse(Arguments& arguments) {
  auto getFormats = [&arguments](std::vector<IOFormat>& formatsVector,
                                 const char* argument) {
    std::string list;
    getAndDelOption(arguments, argument, list);
    std::vector<std::string> formats{splitToStringVec(list, ',')};
    for (const auto& f : formats) {
      formatsVector.push_back(stringToValue<IOFormat>(f));
    }
  };

  getFormats(inputFormats, "--inputIOFormats");
  getFormats(outputFormats, "--outputIOFormats");

  bool addedExplicitBatchFlag{false};
  getAndDelOption(arguments, "--explicitBatch", addedExplicitBatchFlag);
  if (addedExplicitBatchFlag) {
    sample::gLogWarning
        << "--explicitBatch flag has been deprecated and has no effect!"
        << std::endl;
    sample::gLogWarning << "Explicit batch dim is automatically enabled if "
                           "input model is ONNX or if dynamic "
                        << "shapes are provided when the engine is built."
                        << std::endl;
  }

  bool minShapes = getShapesBuild(arguments, shapes, "--minShapes",
                                  nvinfer1::OptProfileSelector::kMIN);
  bool optShapes = getShapesBuild(arguments, shapes, "--optShapes",
                                  nvinfer1::OptProfileSelector::kOPT);
  bool maxShapes = getShapesBuild(arguments, shapes, "--maxShapes",
                                  nvinfer1::OptProfileSelector::kMAX);
  processShapes(shapes, minShapes, optShapes, maxShapes, false);
  bool minShapesCalib =
      getShapesBuild(arguments, shapesCalib, "--minShapesCalib",
                     nvinfer1::OptProfileSelector::kMIN);
  bool optShapesCalib =
      getShapesBuild(arguments, shapesCalib, "--optShapesCalib",
                     nvinfer1::OptProfileSelector::kOPT);
  bool maxShapesCalib =
      getShapesBuild(arguments, shapesCalib, "--maxShapesCalib",
                     nvinfer1::OptProfileSelector::kMAX);
  processShapes(shapesCalib, minShapesCalib, optShapesCalib, maxShapesCalib,
                true);

  bool addedExplicitPrecisionFlag{false};
  getAndDelOption(arguments, "--explicitPrecision", addedExplicitPrecisionFlag);
  if (addedExplicitPrecisionFlag) {
    sample::gLogWarning
        << "--explicitPrecision flag has been deprecated and has no effect!"
        << std::endl;
  }

  if (getAndDelOption(arguments, "--workspace", workspace)) {
    sample::gLogWarning
        << "--workspace flag has been deprecated by --memPoolSize flag."
        << std::endl;
  }

  std::string memPoolSizes;
  getAndDelOption(arguments, "--memPoolSize", memPoolSizes);
  std::vector<std::string> memPoolSpecs{splitToStringVec(memPoolSizes, ',')};
  for (auto const& memPoolSpec : memPoolSpecs) {
    std::string memPoolName;
    double memPoolSize;
    std::tie(memPoolName, memPoolSize) = splitNameAndValue<double>(memPoolSpec);
    if (memPoolSize < 0) {
      throw std::invalid_argument(std::string("Negative memory pool size: ") +
                                  std::to_string(memPoolSize));
    }
    if (memPoolName == "workspace") {
      workspace = memPoolSize;
    } else if (memPoolName == "dlaSRAM") {
      dlaSRAM = memPoolSize;
    } else if (memPoolName == "dlaLocalDRAM") {
      dlaLocalDRAM = memPoolSize;
    } else if (memPoolName == "dlaGlobalDRAM") {
      dlaGlobalDRAM = memPoolSize;
    } else if (!memPoolName.empty()) {
      throw std::invalid_argument(std::string("Unknown memory pool: ") +
                                  memPoolName);
    }
  }

  getAndDelOption(arguments, "--maxBatch", maxBatch);
  getAndDelOption(arguments, "--minTiming", minTiming);
  getAndDelOption(arguments, "--avgTiming", avgTiming);

  bool best{false};
  getAndDelOption(arguments, "--best", best);
  if (best) {
    int8 = true;
    fp16 = true;
  }

  getAndDelOption(arguments, "--refit", refittable);
  getAndDelNegOption(arguments, "--noTF32", tf32);
  getAndDelOption(arguments, "--fp16", fp16);
  getAndDelOption(arguments, "--int8", int8);
  getAndDelOption(arguments, "--safe", safe);
  getAndDelOption(arguments, "--consistency", consistency);
  getAndDelOption(arguments, "--restricted", restricted);

  getAndDelOption(arguments, "--directIO", directIO);

  std::string precisionConstraintsString;
  getAndDelOption(arguments, "--precisionConstraints",
                  precisionConstraintsString);
  if (!precisionConstraintsString.empty()) {
    const std::unordered_map<std::string, PrecisionConstraints>
        precisionConstraintsMap = {{"obey", PrecisionConstraints::kOBEY},
                                   {"prefer", PrecisionConstraints::kPREFER},
                                   {"none", PrecisionConstraints::kNONE}};
    auto it = precisionConstraintsMap.find(precisionConstraintsString);
    if (it == precisionConstraintsMap.end()) {
      throw std::invalid_argument(
          std::string("Unknown precision constraints: ") +
          precisionConstraintsString);
    }
    precisionConstraints = it->second;
  } else {
    precisionConstraints = PrecisionConstraints::kNONE;
  }

  getLayerPrecisions(arguments, "--layerPrecisions", layerPrecisions);
  getLayerOutputTypes(arguments, "--layerOutputTypes", layerOutputTypes);

  if (layerPrecisions.empty() && layerOutputTypes.empty() &&
      precisionConstraints != PrecisionConstraints::kNONE) {
    sample::gLogWarning << "When --precisionConstraints flag is set to "
                           "\"obey\" or \"prefer\", please add "
                        << "--layerPrecision/--layerOutputTypes flags to set "
                           "layer-wise precisions and output "
                        << "types." << std::endl;
  } else if ((!layerPrecisions.empty() || !layerOutputTypes.empty()) &&
             precisionConstraints == PrecisionConstraints::kNONE) {
    sample::gLogWarning << "--layerPrecision/--layerOutputTypes flags have no "
                           "effect when --precisionConstraints "
                        << "flag is set to \"none\"." << std::endl;
  }

  std::string sparsityString;
  getAndDelOption(arguments, "--sparsity", sparsityString);
  if (sparsityString == "disable") {
    sparsity = SparsityFlag::kDISABLE;
  } else if (sparsityString == "enable") {
    sparsity = SparsityFlag::kENABLE;
  } else if (sparsityString == "force") {
    sparsity = SparsityFlag::kFORCE;
  } else if (!sparsityString.empty()) {
    throw std::invalid_argument(std::string("Unknown sparsity mode: ") +
                                sparsityString);
  }

  bool calibCheck = getAndDelOption(arguments, "--calib", calibration);
  if (int8 && calibCheck && !shapes.empty() && shapesCalib.empty()) {
    shapesCalib = shapes;
  }

  std::string profilingVerbosityString;
  if (getAndDelOption(arguments, "--nvtxMode", profilingVerbosityString)) {
    sample::gLogWarning
        << "--nvtxMode flag has been deprecated by --profilingVerbosity flag."
        << std::endl;
  }

  getAndDelOption(arguments, "--profilingVerbosity", profilingVerbosityString);
  if (profilingVerbosityString == "layer_names_only") {
    profilingVerbosity = nvinfer1::ProfilingVerbosity::kLAYER_NAMES_ONLY;
  } else if (profilingVerbosityString == "none") {
    profilingVerbosity = nvinfer1::ProfilingVerbosity::kNONE;
  } else if (profilingVerbosityString == "detailed") {
    profilingVerbosity = nvinfer1::ProfilingVerbosity::kDETAILED;
  } else if (profilingVerbosityString == "default") {
    sample::gLogWarning
        << "--profilingVerbosity=default has been deprecated by "
           "--profilingVerbosity=layer_names_only."
        << std::endl;
    profilingVerbosity = nvinfer1::ProfilingVerbosity::kLAYER_NAMES_ONLY;
  } else if (profilingVerbosityString == "verbose") {
    sample::gLogWarning << "--profilingVerbosity=verbose has been deprecated "
                           "by --profilingVerbosity=detailed."
                        << std::endl;
    profilingVerbosity = nvinfer1::ProfilingVerbosity::kDETAILED;
  } else if (!profilingVerbosityString.empty()) {
    throw std::invalid_argument(std::string("Unknown profilingVerbosity: ") +
                                profilingVerbosityString);
  }

  if (getAndDelOption(arguments, "--loadEngine", engine)) {
    load = true;
  }
  if (getAndDelOption(arguments, "--saveEngine", engine)) {
    save = true;
  }
  if (load && save) {
    throw std::invalid_argument(
        "Incompatible load and save engine options selected");
  }

  std::string tacticSourceArgs;
  if (getAndDelOption(arguments, "--tacticSources", tacticSourceArgs)) {
    std::vector<std::string> tacticList =
        splitToStringVec(tacticSourceArgs, ',');
    for (auto& t : tacticList) {
      bool enable{false};
      if (t.front() == '+') {
        enable = true;
      } else if (t.front() != '-') {
        throw std::invalid_argument(
            "Tactic source must be prefixed with + or -, indicating whether it "
            "should be enabled or disabled "
            "respectively.");
      }
      t.erase(0, 1);

      const auto toUpper = [](std::string& sourceName) {
        std::transform(sourceName.begin(), sourceName.end(), sourceName.begin(),
                       [](char c) { return std::toupper(c); });
        return sourceName;
      };

      nvinfer1::TacticSource source{};
      t = toUpper(t);
      if (t == "CUBLAS") {
        source = nvinfer1::TacticSource::kCUBLAS;
      } else if (t == "CUBLASLT" || t == "CUBLAS_LT") {
        source = nvinfer1::TacticSource::kCUBLAS_LT;
      } else if (t == "CUDNN") {
        source = nvinfer1::TacticSource::kCUDNN;
      } else {
        throw std::invalid_argument(std::string("Unknown tactic source: ") + t);
      }

      uint32_t sourceBit = 1U << static_cast<uint32_t>(source);

      if (enable) {
        enabledTactics |= sourceBit;
      } else {
        disabledTactics |= sourceBit;
      }

      if (enabledTactics & disabledTactics) {
        throw std::invalid_argument(std::string("Cannot enable and disable ") +
                                    t);
      }
    }
  }

  bool noBuilderCache{false};
  getAndDelOption(arguments, "--noBuilderCache", noBuilderCache);
  getAndDelOption(arguments, "--timingCacheFile", timingCacheFile);
  if (noBuilderCache) {
    timingCacheMode = TimingCacheMode::kDISABLE;
  } else if (!timingCacheFile.empty()) {
    timingCacheMode = TimingCacheMode::kGLOBAL;
  } else {
    timingCacheMode = TimingCacheMode::kLOCAL;
  }
}

void SystemOptions::parse(Arguments& arguments) {
  getAndDelOption(arguments, "--device", device);
  getAndDelOption(arguments, "--useDLACore", DLACore);
  getAndDelOption(arguments, "--allowGPUFallback", fallback);
  std::string pluginName;
  while (getAndDelOption(arguments, "--plugins", pluginName)) {
    plugins.emplace_back(pluginName);
  }
}

void InferenceOptions::parse(Arguments& arguments) {
  getAndDelOption(arguments, "--streams", streams);
  getAndDelOption(arguments, "--iterations", iterations);
  getAndDelOption(arguments, "--duration", duration);
  getAndDelOption(arguments, "--warmUp", warmup);
  getAndDelOption(arguments, "--sleepTime", sleep);
  getAndDelOption(arguments, "--idleTime", idle);
  bool exposeDMA{false};
  if (getAndDelOption(arguments, "--exposeDMA", exposeDMA)) {
    overlap = !exposeDMA;
  }
  getAndDelOption(arguments, "--noDataTransfers", skipTransfers);
  getAndDelOption(arguments, "--useManagedMemory", useManaged);
  getAndDelOption(arguments, "--useSpinWait", spin);
  getAndDelOption(arguments, "--threads", threads);
  getAndDelOption(arguments, "--useCudaGraph", graph);
  getAndDelOption(arguments, "--separateProfileRun", rerun);
  getAndDelOption(arguments, "--buildOnly", skip);
  getAndDelOption(arguments, "--timeDeserialize", timeDeserialize);
  getAndDelOption(arguments, "--timeRefit", timeRefit);

  std::string list;
  getAndDelOption(arguments, "--loadInputs", list);
  std::vector<std::string> inputsList{splitToStringVec(list, ',')};
  splitInsertKeyValue(inputsList, inputs);

  getShapesInference(arguments, shapes, "--shapes");
  getAndDelOption(arguments, "--batch", batch);
}

void ReportingOptions::parse(Arguments& arguments) {
  getAndDelOption(arguments, "--percentile", percentile);
  getAndDelOption(arguments, "--avgRuns", avgs);
  getAndDelOption(arguments, "--verbose", verbose);
  getAndDelOption(arguments, "--dumpRefit", refit);
  getAndDelOption(arguments, "--dumpOutput", output);
  getAndDelOption(arguments, "--dumpProfile", profile);
  getAndDelOption(arguments, "--dumpLayerInfo", layerInfo);
  getAndDelOption(arguments, "--exportTimes", exportTimes);
  getAndDelOption(arguments, "--exportOutput", exportOutput);
  getAndDelOption(arguments, "--exportProfile", exportProfile);
  getAndDelOption(arguments, "--exportLayerInfo", exportLayerInfo);
  if (percentile < 0 || percentile > 100) {
    throw std::invalid_argument(std::string("Percentile ") +
                                std::to_string(percentile) +
                                "is not in [0,100]");
  }
}

bool parseHelp(Arguments& arguments) {
  bool helpLong{false};
  bool helpShort{false};
  getAndDelOption(arguments, "--help", helpLong);
  getAndDelOption(arguments, "-h", helpShort);
  return helpLong || helpShort;
}

void AllOptions::parse(Arguments& arguments) {
  model.parse(arguments);
  build.parse(arguments);
  system.parse(arguments);
  inference.parse(arguments);

  // Use explicitBatch when input model is ONNX or when dynamic shapes are used.
  const bool isOnnx{model.baseModel.format == ModelFormat::kONNX};
  const bool hasDynamicShapes{!build.shapes.empty() ||
                              !inference.shapes.empty()};
  const bool detectedExplicitBatch = isOnnx || hasDynamicShapes;

  // Throw an error if user tries to use --batch or --maxBatch when the engine
  // has explicit batch dim.
  const bool maxBatchWasSet{build.maxBatch != maxBatchNotProvided};
  const bool batchWasSet{inference.batch != batchNotProvided};
  if (detectedExplicitBatch && (maxBatchWasSet || batchWasSet)) {
    throw std::invalid_argument(
        "The --batch and --maxBatch flags should not be used when the input "
        "model is ONNX or when dynamic shapes "
        "are provided. Please use --optShapes and --shapes to set input shapes "
        "instead.");
  }

  // If batch and/or maxBatch is not set and the engine has implicit batch dim,
  // set them to default values.
  if (!detectedExplicitBatch) {
    // If batch is not set, set it to default value.
    if (!batchWasSet) {
      inference.batch = defaultBatch;
    }
    // If maxBatch is not set, set it to be equal to batch.
    if (!maxBatchWasSet) {
      build.maxBatch = inference.batch;
    }
    // MaxBatch should not be less than batch.
    if (build.maxBatch < inference.batch) {
      throw std::invalid_argument(
          "Build max batch " + std::to_string(build.maxBatch) +
          " is less than inference batch " + std::to_string(inference.batch));
    }
  }

  if (build.shapes.empty() && !inference.shapes.empty()) {
    // If --shapes are provided but --optShapes are not, assume that optShapes
    // is the same as shapes.
    for (auto& s : inference.shapes) {
      insertShapesBuild(build.shapes, nvinfer1::OptProfileSelector::kMIN,
                        s.first, s.second);
      insertShapesBuild(build.shapes, nvinfer1::OptProfileSelector::kOPT,
                        s.first, s.second);
      insertShapesBuild(build.shapes, nvinfer1::OptProfileSelector::kMAX,
                        s.first, s.second);
    }
  } else if (!build.shapes.empty() && inference.shapes.empty()) {
    // If --optShapes are provided but --shapes are not, assume that shapes is
    // the same as optShapes.
    for (auto& s : build.shapes) {
      insertShapesInference(
          inference.shapes, s.first,
          s.second[static_cast<size_t>(nvinfer1::OptProfileSelector::kOPT)]);
    }
  }

  reporting.parse(arguments);
  helps = parseHelp(arguments);

  if (!helps) {
    if (!build.load && model.baseModel.format == ModelFormat::kANY) {
      throw std::invalid_argument("Model missing or format not recognized");
    }
    if (build.safe && system.DLACore >= 0) {
      auto checkSafeDLAFormats = [](std::vector<IOFormat> const& fmt) {
        return fmt.empty()
                   ? false
                   : std::all_of(fmt.begin(), fmt.end(), [](IOFormat const&
                                                                pair) {
                       bool supported{false};
                       bool const isLINEAR{
                           pair.second ==
                           1U << static_cast<int32_t>(
                               nvinfer1::TensorFormat::kLINEAR)};
                       bool const isCHW4{pair.second ==
                                         1U << static_cast<int32_t>(
                                             nvinfer1::TensorFormat::kCHW4)};
                       bool const isCHW32{pair.second ==
                                          1U << static_cast<int32_t>(
                                              nvinfer1::TensorFormat::kCHW32)};
                       bool const isCHW16{pair.second ==
                                          1U << static_cast<int32_t>(
                                              nvinfer1::TensorFormat::kCHW16)};
                       supported |= pair.first == nvinfer1::DataType::kINT8 &&
                                    (isLINEAR || isCHW4 || isCHW32);
                       supported |= pair.first == nvinfer1::DataType::kHALF &&
                                    (isLINEAR || isCHW4 || isCHW16);
                       return supported;
                     });
      };
      if (!checkSafeDLAFormats(build.inputFormats) ||
          !checkSafeDLAFormats(build.outputFormats)) {
        throw std::invalid_argument(
            "I/O formats for safe DLA capability are restricted to "
            "fp16/int8:linear, fp16:chw16 or int8:chw32");
      }
      if (system.fallback) {
        throw std::invalid_argument(
            "GPU fallback (--allowGPUFallback) not allowed for safe DLA "
            "capability");
      }
    }
  }
}

void SafeBuilderOptions::parse(Arguments& arguments) {
  auto getFormats = [&arguments](std::vector<IOFormat>& formatsVector,
                                 const char* argument) {
    std::string list;
    getAndDelOption(arguments, argument, list);
    std::vector<std::string> formats{splitToStringVec(list, ',')};
    for (const auto& f : formats) {
      formatsVector.push_back(stringToValue<IOFormat>(f));
    }
  };

  getAndDelOption(arguments, "--serialized", serialized);
  getAndDelOption(arguments, "--onnx", onnxModelFile);
  getAndDelOption(arguments, "--help", help);
  getAndDelOption(arguments, "-h", help);
  getAndDelOption(arguments, "--verbose", verbose);
  getAndDelOption(arguments, "-v", verbose);
  getFormats(inputFormats, "--inputIOFormats");
  getFormats(outputFormats, "--outputIOFormats");
  getAndDelOption(arguments, "--int8", int8);
  getAndDelOption(arguments, "--calib", calibFile);
  getAndDelOption(arguments, "--consistency", consistency);
  getAndDelOption(arguments, "--std", standard);
  std::string pluginName;
  while (getAndDelOption(arguments, "--plugins", pluginName)) {
    plugins.emplace_back(pluginName);
  }
}

std::ostream& operator<<(std::ostream& os, const BaseModelOptions& options) {
  os << "=== Model Options ===" << std::endl;

  os << "Format: ";
  switch (options.format) {
    case ModelFormat::kCAFFE: {
      os << "Caffe";
      break;
    }
    case ModelFormat::kONNX: {
      os << "ONNX";
      break;
    }
    case ModelFormat::kUFF: {
      os << "UFF";
      break;
    }
    case ModelFormat::kANY:
      os << "*";
      break;
  }
  os << std::endl << "Model: " << options.model << std::endl;

  return os;
}

std::ostream& operator<<(std::ostream& os, const UffInput& input) {
  os << "Uff Inputs Layout: " << (input.NHWC ? "NHWC" : "NCHW") << std::endl;
  for (const auto& i : input.inputs) {
    os << "Input: " << i.first << "," << i.second.d[0] << "," << i.second.d[1]
       << "," << i.second.d[2] << std::endl;
  }

  return os;
}

std::ostream& operator<<(std::ostream& os, const ModelOptions& options) {
  os << options.baseModel;
  switch (options.baseModel.format) {
    case ModelFormat::kCAFFE: {
      os << "Prototxt: " << options.prototxt << std::endl;
      break;
    }
    case ModelFormat::kUFF: {
      os << options.uffInputs;
      break;
    }
    case ModelFormat::kONNX:  // Fallthrough: No options to report for ONNX or
                              // the generic case
    case ModelFormat::kANY:
      break;
  }

  os << "Output:";
  for (const auto& o : options.outputs) {
    os << " " << o;
  }
  os << std::endl;

  return os;
}

std::ostream& operator<<(std::ostream& os, nvinfer1::DataType dtype) {
  switch (dtype) {
    case nvinfer1::DataType::kFLOAT: {
      os << "fp32";
      break;
    }
    case nvinfer1::DataType::kHALF: {
      os << "fp16";
      break;
    }
    case nvinfer1::DataType::kINT8: {
      os << "int8";
      break;
    }
    case nvinfer1::DataType::kINT32: {
      os << "int32";
      break;
    }
    case nvinfer1::DataType::kBOOL: {
      os << "bool";
      break;
    }
  }
  return os;
}

std::ostream& operator<<(std::ostream& os, IOFormat const& format) {
  os << format.first << ":";

  for (int32_t f = 0; f < nvinfer1::EnumMax<nvinfer1::TensorFormat>(); ++f) {
    if ((1U << f) & format.second) {
      if (f) {
        os << "+";
      }
      switch (nvinfer1::TensorFormat(f)) {
        case nvinfer1::TensorFormat::kLINEAR: {
          os << "chw";
          break;
        }
        case nvinfer1::TensorFormat::kCHW2: {
          os << "chw2";
          break;
        }
        case nvinfer1::TensorFormat::kHWC8: {
          os << "hwc8";
          break;
        }
        case nvinfer1::TensorFormat::kHWC16: {
          os << "hwc16";
          break;
        }
        case nvinfer1::TensorFormat::kCHW4: {
          os << "chw4";
          break;
        }
        case nvinfer1::TensorFormat::kCHW16: {
          os << "chw16";
          break;
        }
        case nvinfer1::TensorFormat::kCHW32: {
          os << "chw32";
          break;
        }
        case nvinfer1::TensorFormat::kDHWC8: {
          os << "dhwc8";
          break;
        }
        case nvinfer1::TensorFormat::kCDHW32: {
          os << "cdhw32";
          break;
        }
        case nvinfer1::TensorFormat::kHWC: {
          os << "hwc";
          break;
        }
        case nvinfer1::TensorFormat::kDLA_LINEAR: {
          os << "dla_linear";
          break;
        }
        case nvinfer1::TensorFormat::kDLA_HWC4: {
          os << "dla_hwc4";
          break;
        }
      }
    }
  }
  return os;
}

std::ostream& operator<<(std::ostream& os, const ShapeRange& dims) {
  int32_t i = 0;
  for (const auto& d : dims) {
    if (!d.size()) {
      break;
    }
    os << (i ? "+" : "") << d;
    ++i;
  }
  return os;
}

std::ostream& operator<<(std::ostream& os,
                         LayerPrecisions const& layerPrecisions) {
  int32_t i = 0;
  for (auto const& layerPrecision : layerPrecisions) {
    os << (i ? "," : "") << layerPrecision.first << ":"
       << layerPrecision.second;
    ++i;
  }
  return os;
}

std::ostream& operator<<(std::ostream& os, const BuildOptions& options) {
  // clang-format off
    os << "=== Build Options ==="                                                                                       << std::endl <<

          "Max batch: ";        printBatch(os, options.maxBatch)                                                        << std::endl <<
          "Memory Pools: ";     printMemoryPools(os, options)                                                           << std::endl <<
          "minTiming: "      << options.minTiming                                                                       << std::endl <<
          "avgTiming: "      << options.avgTiming                                                                       << std::endl <<
          "Precision: ";        printPrecision(os, options)                                                             << std::endl <<
          "LayerPrecisions: " << options.layerPrecisions                                                                << std::endl <<
          "Calibration: "    << (options.int8 && options.calibration.empty() ? "Dynamic" : options.calibration.c_str()) << std::endl <<
          "Refit: "          << boolToEnabled(options.refittable)                                                       << std::endl <<
          "Sparsity: ";         printSparsity(os, options)                                                              << std::endl <<
          "Safe mode: "      << boolToEnabled(options.safe)                                                             << std::endl <<
          "DirectIO mode: "  << boolToEnabled(options.directIO)                                                         << std::endl <<
          "Restricted mode: " << boolToEnabled(options.restricted)                                                      << std::endl <<
          "Save engine: "    << (options.save ? options.engine : "")                                                    << std::endl <<
          "Load engine: "    << (options.load ? options.engine : "")                                                    << std::endl <<
          "Profiling verbosity: " << static_cast<int32_t>(options.profilingVerbosity)                                   << std::endl <<
          "Tactic sources: ";   printTacticSources(os, options.enabledTactics, options.disabledTactics)                 << std::endl <<
          "timingCacheMode: ";  printTimingCache(os, options)                                                           << std::endl <<
          "timingCacheFile: " << options.timingCacheFile                                                                << std::endl;
  // clang-format on

  auto printIOFormats = [](std::ostream& os, const char* direction,
                           const std::vector<IOFormat> formats) {
    if (formats.empty()) {
      os << direction << "s format: fp32:CHW" << std::endl;
    } else {
      for (const auto& f : formats) {
        os << direction << ": " << f << std::endl;
      }
    }
  };

  printIOFormats(os, "Input(s)", options.inputFormats);
  printIOFormats(os, "Output(s)", options.outputFormats);
  printShapes(os, "build", options.shapes);
  printShapes(os, "calibration", options.shapesCalib);

  return os;
}

std::ostream& operator<<(std::ostream& os, const SystemOptions& options) {
  // clang-format off
    os << "=== System Options ==="                                                                << std::endl <<

          "Device: "  << options.device                                                           << std::endl <<
          "DLACore: " << (options.DLACore != -1 ? std::to_string(options.DLACore) : "")           <<
                         (options.DLACore != -1 && options.fallback ? "(With GPU fallback)" : "") << std::endl;
    os << "Plugins:";

    for (const auto& p : options.plugins)
    {
        os << " " << p;
    }
    os << std::endl;

    return os;
  // clang-format on
}

std::ostream& operator<<(std::ostream& os, const InferenceOptions& options) {
  // clang-format off
    os << "=== Inference Options ==="                                     << std::endl <<

          "Batch: ";
    if (options.batch && options.shapes.empty())
    {
                          os << options.batch                             << std::endl;
    }
    else
    {
                          os << "Explicit"                                << std::endl;
    }
    printShapes(os, "inference", options.shapes);
    os << "Iterations: "         << options.iterations                    << std::endl <<
          "Duration: "           << options.duration   << "s (+ "
                                 << options.warmup     << "ms warm up)"   << std::endl <<
          "Sleep time: "         << options.sleep      << "ms"            << std::endl <<
          "Idle time: "          << options.idle       << "ms"            << std::endl <<
          "Streams: "            << options.streams                       << std::endl <<
          "ExposeDMA: "          << boolToEnabled(!options.overlap)       << std::endl <<
          "Data transfers: "     << boolToEnabled(!options.skipTransfers) << std::endl <<
          "Spin-wait: "          << boolToEnabled(options.spin)           << std::endl <<
          "Multithreading: "     << boolToEnabled(options.threads)        << std::endl <<
          "CUDA Graph: "         << boolToEnabled(options.graph)          << std::endl <<
          "Separate profiling: " << boolToEnabled(options.rerun)          << std::endl <<
          "Time Deserialize: "   << boolToEnabled(options.timeDeserialize) << std::endl <<
          "Time Refit: "         << boolToEnabled(options.timeRefit) << std::endl <<
          "Skip inference: "     << boolToEnabled(options.skip)           << std::endl;

  // clang-format on
  os << "Inputs:" << std::endl;
  for (const auto& input : options.inputs) {
    os << input.first << "<-" << input.second << std::endl;
  }

  return os;
}

std::ostream& operator<<(std::ostream& os, const ReportingOptions& options) {
  // clang-format off
    os << "=== Reporting Options ==="                                       << std::endl <<

          "Verbose: "                     << boolToEnabled(options.verbose) << std::endl <<
          "Averages: "                    << options.avgs << " inferences"  << std::endl <<
          "Percentile: "                  << options.percentile             << std::endl <<
          "Dump refittable layers:"       << boolToEnabled(options.refit)   << std::endl <<
          "Dump output: "                 << boolToEnabled(options.output)  << std::endl <<
          "Profile: "                     << boolToEnabled(options.profile) << std::endl <<
          "Export timing to JSON file: "  << options.exportTimes            << std::endl <<
          "Export output to JSON file: "  << options.exportOutput           << std::endl <<
          "Export profile to JSON file: " << options.exportProfile          << std::endl;
  // clang-format on

  return os;
}

std::ostream& operator<<(std::ostream& os, const AllOptions& options) {
  os << options.model << options.build << options.system << options.inference
     << options.reporting << std::endl;
  return os;
}

std::ostream& operator<<(std::ostream& os, const SafeBuilderOptions& options) {
  auto printIOFormats = [](std::ostream& os, const char* direction,
                           const std::vector<IOFormat> formats) {
    if (formats.empty()) {
      os << direction << "s format: fp32:CHW" << std::endl;
    } else {
      for (const auto& f : formats) {
        os << direction << ": " << f << std::endl;
      }
    }
  };

  os << "=== Build Options ===" << std::endl;
  os << "Model ONNX: " << options.onnxModelFile << std::endl;

  os << "Precision: FP16";
  if (options.int8) {
    os << " + INT8";
  }
  os << std::endl;
  os << "Calibration file: " << options.calibFile << std::endl;
  os << "Serialized Network: " << options.serialized << std::endl;

  printIOFormats(os, "Input(s)", options.inputFormats);
  printIOFormats(os, "Output(s)", options.outputFormats);

  os << "Plugins:";
  for (const auto& p : options.plugins) {
    os << " " << p;
  }
  os << std::endl;
  return os;
}

void BaseModelOptions::help(std::ostream& os) {
  // clang-format off
    os << "  --uff=<file>                UFF model"                                             << std::endl <<
          "  --onnx=<file>               ONNX model"                                            << std::endl <<
          "  --model=<file>              Caffe model (default = no model, random weights used)" << std::endl;
  // clang-format on
}

void UffInput::help(std::ostream& os) {
  // clang-format off
    os << "  --uffInput=<name>,X,Y,Z     Input blob name and its dimensions (X,Y,Z=C,H,W), it can be specified "
                                                       "multiple times; at least one is required for UFF models" << std::endl <<
          "  --uffNHWC                   Set if inputs are in the NHWC layout instead of NCHW (use "             <<
                                                                    "X,Y,Z=H,W,C order in --uffInput)"           << std::endl;
  // clang-format on
}

void ModelOptions::help(std::ostream& os) {
  // clang-format off
    os << "=== Model Options ==="                                                                                 << std::endl;
    BaseModelOptions::help(os);
    os << "  --deploy=<file>             Caffe prototxt file"                                                     << std::endl <<
          "  --output=<name>[,<name>]*   Output names (it can be specified multiple times); at least one output "
                                                                                  "is required for UFF and Caffe" << std::endl;
    UffInput::help(os);
  // clang-format on
}

void BuildOptions::help(std::ostream& os) {
  // clang-format off
    os << "=== Build Options ==="                                                                                                            "\n"
          "  --maxBatch                  Set max batch size and build an implicit batch engine (default = same size as --batch)"             "\n"
          "                              This option should not be used when the input model is ONNX or when dynamic shapes are provided."   "\n"
          "  --minShapes=spec            Build with dynamic shapes using a profile with the min shapes provided"                             "\n"
          "  --optShapes=spec            Build with dynamic shapes using a profile with the opt shapes provided"                             "\n"
          "  --maxShapes=spec            Build with dynamic shapes using a profile with the max shapes provided"                             "\n"
          "  --minShapesCalib=spec       Calibrate with dynamic shapes using a profile with the min shapes provided"                         "\n"
          "  --optShapesCalib=spec       Calibrate with dynamic shapes using a profile with the opt shapes provided"                         "\n"
          "  --maxShapesCalib=spec       Calibrate with dynamic shapes using a profile with the max shapes provided"                         "\n"
          "                              Note: All three of min, opt and max shapes must be supplied."                                       "\n"
          "                                    However, if only opt shapes is supplied then it will be expanded so"                          "\n"
          "                                    that min shapes and max shapes are set to the same values as opt shapes."                     "\n"
          "                                    Input names can be wrapped with escaped single quotes (ex: \\\'Input:0\\\')."                 "\n"
          "                              Example input shapes spec: input0:1x3x256x256,input1:1x3x128x128"                                   "\n"
          "                              Each input shape is supplied as a key-value pair where key is the input name and"                   "\n"
          "                              value is the dimensions (including the batch dimension) to be used for that input."                 "\n"
          "                              Each key-value pair has the key and value separated using a colon (:)."                             "\n"
          "                              Multiple input shapes can be provided via comma-separated key-value pairs."                         "\n"
          "  --inputIOFormats=spec       Type and format of each of the input tensors (default = all inputs in fp32:chw)"                    "\n"
          "                              See --outputIOFormats help for the grammar of type and format list."                                "\n"
          "                              Note: If this option is specified, please set comma-separated types and formats for all"            "\n"
          "                                    inputs following the same order as network inputs ID (even if only one input"                 "\n"
          "                                    needs specifying IO format) or set the type and format once for broadcasting."                "\n"
          "  --outputIOFormats=spec      Type and format of each of the output tensors (default = all outputs in fp32:chw)"                  "\n"
          "                              Note: If this option is specified, please set comma-separated types and formats for all"            "\n"
          "                                    outputs following the same order as network outputs ID (even if only one output"              "\n"
          "                                    needs specifying IO format) or set the type and format once for broadcasting."                "\n"
          "                              IO Formats: spec  ::= IOfmt[\",\"spec]"                                                             "\n"
          "                                          IOfmt ::= type:fmt"                                                                     "\n"
          "                                          type  ::= \"fp32\"|\"fp16\"|\"int32\"|\"int8\""                                         "\n"
          "                                          fmt   ::= (\"chw\"|\"chw2\"|\"chw4\"|\"hwc8\"|\"chw16\"|\"chw32\"|\"dhwc8\")[\"+\"fmt]" "\n"
          "  --workspace=N               Set workspace size in MiB."                                                                         "\n"
          "  --memPoolSize=poolspec      Specify the size constraints of the designated memory pool(s) in MiB."                              "\n"
          "                              Note: Also accepts decimal sizes, e.g. 0.25MiB. Will be rounded down to the nearest integer bytes." "\n"
          "                              Pool constraint: poolspec ::= poolfmt[\",\"poolspec]"                                               "\n"
          "                                               poolfmt ::= pool:sizeInMiB"                                                        "\n"
          "                                               pool ::= \"workspace\"|\"dlaSRAM\"|\"dlaLocalDRAM\"|\"dlaGlobalDRAM\""             "\n"
          "  --profilingVerbosity=mode   Specify profiling verbosity. mode ::= layer_names_only|detailed|none (default = layer_names_only)"  "\n"
          "  --minTiming=M               Set the minimum number of iterations used in kernel selection (default = "
                                                                                                           << defaultMinTiming << ")"        "\n"
          "  --avgTiming=M               Set the number of times averaged in each iteration for kernel selection (default = "
                                                                                                           << defaultAvgTiming << ")"        "\n"
          "  --refit                     Mark the engine as refittable. This will allow the inspection of refittable layers "                "\n"
          "                              and weights within the engine."                                                                     "\n"
          "  --sparsity=spec             Control sparsity (default = disabled). "                                                            "\n"
          "                              Sparsity: spec ::= \"disable\", \"enable\", \"force\""                                              "\n"
          "                              Note: Description about each of these options is as below"                                          "\n"
          "                                    disable = do not enable sparse tactics in the builder (this is the default)"                  "\n"
          "                                    enable  = enable sparse tactics in the builder (but these tactics will only be"               "\n"
          "                                              considered if the weights have the right sparsity pattern)"                         "\n"
          "                                    force   = enable sparse tactics in the builder and force-overwrite the weights to have"       "\n"
          "                                              a sparsity pattern (even if you loaded a model yourself)"                           "\n"
          "  --noTF32                    Disable tf32 precision (default is to enable tf32, in addition to fp32)"                            "\n"
          "  --fp16                      Enable fp16 precision, in addition to fp32 (default = disabled)"                                    "\n"
          "  --int8                      Enable int8 precision, in addition to fp32 (default = disabled)"                                    "\n"
          "  --best                      Enable all precisions to achieve the best performance (default = disabled)"                         "\n"
          "  --directIO                  Avoid reformatting at network boundaries. (default = disabled)"                                     "\n"
          "  --precisionConstraints=spec Control precision constraint setting. (default = none)"                                             "\n"
          "                                  Precision Constaints: spec ::= \"none\" | \"obey\" | \"prefer\""                                "\n"
          "                                  none = no constraints"                                                                          "\n"
          "                                  prefer = meet precision constraints set by --layerPrecisions/--layerOutputTypes if possible"    "\n"
          "                                  obey = meet precision constraints set by --layerPrecisions/--layerOutputTypes or fail"          "\n"
          "                                         otherwise"                                                                               "\n"
          "  --layerPrecisions=spec      Control per-layer precision constraints. Effective only when precisionConstraints is set to"        "\n"
          "                              \"obey\" or \"prefer\". (default = none)"                                                           "\n"
          "                              The specs are read left-to-right, and later ones override earlier ones. \"*\" can be used as a"     "\n"
          "                              layerName to specify the default precision for all the unspecified layers."                         "\n"
          "                              Per-layer precision spec ::= layerPrecision[\",\"spec]"                                             "\n"
          "                                                  layerPrecision ::= layerName\":\"precision"                                     "\n"
          "                                                  precision ::= \"fp32\"|\"fp16\"|\"int32\"|\"int8\""                             "\n"
          "  --layerOutputTypes=spec     Control per-layer output type constraints. Effective only when precisionConstraints is set to"      "\n"
          "                              \"obey\" or \"prefer\". (default = none)"                                                           "\n"
          "                              The specs are read left-to-right, and later ones override earlier ones. \"*\" can be used as a"     "\n"
          "                              layerName to specify the default precision for all the unspecified layers. If a layer has more than""\n"
          "                              one output, then multiple types separated by \"+\" can be provided for this layer."                 "\n"
          "                              Per-layer output type spec ::= layerOutputTypes[\",\"spec]"                                         "\n"
          "                                                    layerOutputTypes ::= layerName\":\"type"                                      "\n"
          "                                                    type ::= \"fp32\"|\"fp16\"|\"int32\"|\"int8\"[\"+\"type]"                     "\n"
          "  --calib=<file>              Read INT8 calibration cache file"                                                                   "\n"
          "  --safe                      Enable build safety certified engine"                                                               "\n"
          "  --consistency               Perform consistency checking on safety certified engine"                                            "\n"
          "  --restricted                Enable safety scope checking with kSAFETY_SCOPE build flag"                                         "\n"
          "  --saveEngine=<file>         Save the serialized engine"                                                                         "\n"
          "  --loadEngine=<file>         Load a serialized engine"                                                                           "\n"
          "  --tacticSources=tactics     Specify the tactics to be used by adding (+) or removing (-) tactics from the default "             "\n"
          "                              tactic sources (default = all available tactics)."                                                  "\n"
          "                              Note: Currently only cuDNN, cuBLAS and cuBLAS-LT are listed as optional tactics."                   "\n"
          "                              Tactic Sources: tactics ::= [\",\"tactic]"                                                          "\n"
          "                                              tactic  ::= (+|-)lib"                                                               "\n"
          "                                              lib     ::= \"CUBLAS\"|\"CUBLAS_LT\"|\"CUDNN\""                                     "\n"
          "                              For example, to disable cudnn and enable cublas: --tacticSources=-CUDNN,+CUBLAS"                    "\n"
          "  --noBuilderCache            Disable timing cache in builder (default is to enable timing cache)"                                "\n"
          "  --timingCacheFile=<file>    Save/load the serialized global timing cache"                                                       "\n"
          ;
  // clang-format on
  os << std::flush;
}

void SystemOptions::help(std::ostream& os) {
  // clang-format off
    os << "=== System Options ==="                                                                         << std::endl <<
          "  --device=N                  Select cuda device N (default = "         << defaultDevice << ")" << std::endl <<
          "  --useDLACore=N              Select DLA core N for layers that support DLA (default = none)"   << std::endl <<
          "  --allowGPUFallback          When DLA is enabled, allow GPU fallback for unsupported layers "
                                                                                    "(default = disabled)" << std::endl;
    os << "  --plugins                   Plugin library (.so) to load (can be specified multiple times)"   << std::endl;
  // clang-format on
}

void InferenceOptions::help(std::ostream& os) {
  // clang-format off
    os << "=== Inference Options ==="                                                                                                << std::endl <<
          "  --batch=N                   Set batch size for implicit batch engines (default = "              << defaultBatch << ")"  << std::endl <<
          "                              This option should not be used when the engine is built from an ONNX model or when dynamic" << std::endl <<
          "                              shapes are provided when the engine is built."                                              << std::endl <<
          "  --shapes=spec               Set input shapes for dynamic shapes inference inputs."                                      << std::endl <<
          "                              Note: Input names can be wrapped with escaped single quotes (ex: \\\'Input:0\\\')."         << std::endl <<
          "                              Example input shapes spec: input0:1x3x256x256, input1:1x3x128x128"                          << std::endl <<
          "                              Each input shape is supplied as a key-value pair where key is the input name and"           << std::endl <<
          "                              value is the dimensions (including the batch dimension) to be used for that input."         << std::endl <<
          "                              Each key-value pair has the key and value separated using a colon (:)."                     << std::endl <<
          "                              Multiple input shapes can be provided via comma-separated key-value pairs."                 << std::endl <<
          "  --loadInputs=spec           Load input values from files (default = generate random inputs). Input names can be "
                                                                                       "wrapped with single quotes (ex: 'Input:0')"  << std::endl <<
          "                              Input values spec ::= Ival[\",\"spec]"                                                      << std::endl <<
          "                                           Ival ::= name\":\"file"                                                        << std::endl <<
          "  --iterations=N              Run at least N inference iterations (default = "               << defaultIterations << ")"  << std::endl <<
          "  --warmUp=N                  Run for N milliseconds to warmup before measuring performance (default = "
                                                                                                            << defaultWarmUp << ")"  << std::endl <<
          "  --duration=N                Run performance measurements for at least N seconds wallclock time (default = "
                                                                                                          << defaultDuration << ")"  << std::endl <<
          "  --sleepTime=N               Delay inference start with a gap of N milliseconds between launch and compute "
                                                                                               "(default = " << defaultSleep << ")"  << std::endl <<
          "  --idleTime=N                Sleep N milliseconds between two continuous iterations"
                                                                                               "(default = " << defaultIdle << ")"   << std::endl <<
          "  --streams=N                 Instantiate N engines to use concurrently (default = "            << defaultStreams << ")"  << std::endl <<
          "  --exposeDMA                 Serialize DMA transfers to and from device (default = disabled)."                           << std::endl <<
          "  --noDataTransfers           Disable DMA transfers to and from device (default = enabled)."                              << std::endl <<
          "  --useManagedMemory          Use managed memory instead of seperate host and device allocations (default = disabled)."   << std::endl <<
          "  --useSpinWait               Actively synchronize on GPU events. This option may decrease synchronization time but "
                                                                             "increase CPU usage and power (default = disabled)"     << std::endl <<
          "  --threads                   Enable multithreading to drive engines with independent threads"
                                                                                " or speed up refitting (default = disabled) "       << std::endl <<
          "  --useCudaGraph              Use CUDA graph to capture engine execution and then launch inference (default = disabled)." << std::endl <<
          "                              This flag may be ignored if the graph capture fails."                                       << std::endl <<
          "  --timeDeserialize           Time the amount of time it takes to deserialize the network and exit."                      << std::endl <<
          "  --timeRefit                 Time the amount of time it takes to refit the engine before inference."                     << std::endl <<
          "  --separateProfileRun        Do not attach the profiler in the benchmark run; if profiling is enabled, a second "
                                                                                "profile run will be executed (default = disabled)"  << std::endl <<
          "  --buildOnly                 Skip inference perf measurement (default = disabled)"                                       << std::endl;
  // clang-format on
}

void ReportingOptions::help(std::ostream& os) {
  // clang-format off
    os << "=== Reporting Options ==="                                                                    << std::endl <<
          "  --verbose                   Use verbose logging (default = false)"                          << std::endl <<
          "  --avgRuns=N                 Report performance measurements averaged over N consecutive "
                                                       "iterations (default = " << defaultAvgRuns << ")" << std::endl <<
          "  --percentile=P              Report performance for the P percentage (0<=P<=100, 0 "
                                        "representing max perf, and 100 representing min perf; (default"
                                                                      " = " << defaultPercentile << "%)" << std::endl <<
          "  --dumpRefit                 Print the refittable layers and weights from a refittable "
                                        "engine"                                                         << std::endl <<
          "  --dumpOutput                Print the output tensor(s) of the last inference iteration "
                                                                                  "(default = disabled)" << std::endl <<
          "  --dumpProfile               Print profile information per layer (default = disabled)"       << std::endl <<
          "  --dumpLayerInfo             Print layer information of the engine to console "
                                                                                "(default = disabled)"   << std::endl <<
          "  --exportTimes=<file>        Write the timing results in a json file (default = disabled)"   << std::endl <<
          "  --exportOutput=<file>       Write the output tensors to a json file (default = disabled)"   << std::endl <<
          "  --exportProfile=<file>      Write the profile information per layer in a json file "
                                                                              "(default = disabled)"     << std::endl <<
          "  --exportLayerInfo=<file>    Write the layer information of the engine in a json file "
                                                                              "(default = disabled)"     << std::endl;
  // clang-format on
}

void helpHelp(std::ostream& os) {
  // clang-format off
    os << "=== Help ==="                                     << std::endl <<
          "  --help, -h                  Print this message" << std::endl;
  // clang-format on
}

void AllOptions::help(std::ostream& os) {
  ModelOptions::help(os);
  os << std::endl;
  BuildOptions::help(os);
  os << std::endl;
  InferenceOptions::help(os);
  os << std::endl;
  // clang-format off
    os << "=== Build and Inference Batch Options ==="                                                                   << std::endl <<
          "                              When using implicit batch, the max batch size of the engine, if not given, "   << std::endl <<
          "                              is set to the inference batch size;"                                           << std::endl <<
          "                              when using explicit batch, if shapes are specified only for inference, they "  << std::endl <<
          "                              will be used also as min/opt/max in the build profile; if shapes are "         << std::endl <<
          "                              specified only for the build, the opt shapes will be used also for inference;" << std::endl <<
          "                              if both are specified, they must be compatible; and if explicit batch is "     << std::endl <<
          "                              enabled but neither is specified, the model must provide complete static"      << std::endl <<
          "                              dimensions, including batch size, for all inputs"                              << std::endl <<
          "                              Using ONNX models automatically forces explicit batch."                        << std::endl <<
    std::endl;
  // clang-format on
  ReportingOptions::help(os);
  os << std::endl;
  SystemOptions::help(os);
  os << std::endl;
  helpHelp(os);
}

void SafeBuilderOptions::printHelp(std::ostream& os) {
  // clang-format off
    os << "=== Mandatory ==="                                                                                                                << std::endl <<
          "  --onnx=<file>               ONNX model"                                                                                         << std::endl <<
          " "                                                                                                                                << std::endl <<
          "=== Optional ==="                                                                                                                 << std::endl <<
          "  --inputIOFormats=spec       Type and format of each of the input tensors (default = all inputs in fp32:chw)"                    << std::endl <<
          "                              See --outputIOFormats help for the grammar of type and format list."                                << std::endl <<
          "                              Note: If this option is specified, please set comma-separated types and formats for all"            << std::endl <<
          "                                    inputs following the same order as network inputs ID (even if only one input"                 << std::endl <<
          "                                    needs specifying IO format) or set the type and format once for broadcasting."                << std::endl <<
          "  --outputIOFormats=spec      Type and format of each of the output tensors (default = all outputs in fp32:chw)"                  << std::endl <<
          "                              Note: If this option is specified, please set comma-separated types and formats for all"            << std::endl <<
          "                                    outputs following the same order as network outputs ID (even if only one output"              << std::endl <<
          "                                    needs specifying IO format) or set the type and format once for broadcasting."                << std::endl <<
          "                              IO Formats: spec  ::= IOfmt[\",\"spec]"                                                             << std::endl <<
          "                                          IOfmt ::= type:fmt"                                                                     << std::endl <<
          "                                          type  ::= \"fp32\"|\"fp16\"|\"int32\"|\"int8\""                                         << std::endl <<
          "                                          fmt   ::= (\"chw\"|\"chw2\"|\"chw4\"|\"hwc8\"|\"chw16\"|\"chw32\"|\"dhwc8\")[\"+\"fmt]" << std::endl <<
          "  --int8                      Enable int8 precision, in addition to fp16 (default = disabled)"                                    << std::endl <<
          "  --consistency               Enable consistency check for serialized engine, (default = disabled)"                               << std::endl <<
          "  --std                       Build standard serialized engine, (default = disabled)"                                             << std::endl <<
          "  --calib=<file>              Read INT8 calibration cache file"                                                                   << std::endl <<
          "  --serialized=<file>         Save the serialized network"                                                                        << std::endl <<
          "  --plugins                   Plugin library (.so) to load (can be specified multiple times)"                                     << std::endl <<
          "  --verbose or -v             Use verbose logging (default = false)"                                                              << std::endl <<
          "  --help or -h                Print this message"                                                                                 << std::endl <<
          " "                                                                                                                                << std::endl;
  // clang-format on
}

}  // namespace sample
